Machine learning
In: Forthcoming in “Encyclopedia of International Economic Law”, edited by Krista Nadakavukaren Schefer and Thomas Cottier (;Edward Elgar Publishing);
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In: Forthcoming in “Encyclopedia of International Economic Law”, edited by Krista Nadakavukaren Schefer and Thomas Cottier (;Edward Elgar Publishing);
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In: Werkstattstechnik: wt, Band 111, Heft 9, S. 638-643
ISSN: 1436-4980
Millionen Pakete werden jährlich in Logistikzentren gehandhabt. Um die große Vielfalt unterschiedlicher Kartons abdecken zu können, kommen meist Standard-Greifsysteme mit leistungsfähigen Vakuumejektoren zum Einsatz, die durchgehend bei hohem Überdruck betrieben werden. So wird in den meisten Fällen mehr Energie verbraucht, als benötigt wird. Durch den Einsatz von Machine Learning kann das manuelle, erfahrungsbasierte Einstellen der Prozessparameter eliminiert und Energieeinsparungen von bis zu 70 % erzielt werden.
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Working paper
In: Advanced Studies in Theoretical and Applied Econometrics, v.53
This book helps and promotes the use of machine learning tools and techniques in econometrics and explains how machine learning can enhance and expand the econometrics toolbox in theory and in practice. Throughout the volume, the authors raise and answer six questions: 1) What are the similarities between existing econometric and machine learning techniques? 2) To what extent can machine learning techniques assist econometric investigation? Specifically, how robust or stable is the prediction from machine learning algorithms given the ever-changing nature of human behavior? 3) Can machine learning techniques assist in testing statistical hypotheses and identifying causal relationships in big data? 4) How can existing econometric techniques be extended by incorporating machine learning concepts? 5) How can new econometric tools and approaches be elaborated on based on machine learning techniques? 6) Is it possible to develop machine learning techniques further and make them even more readily applicable in econometrics? As the data structures in economic and financial data become more complex and models become more sophisticated, the book takes a multidisciplinary approach in developing both disciplines of machine learning and econometrics in conjunction, rather than in isolation. This volume is a must-read for scholars, researchers, students, policy-makers, and practitioners, who are using econometrics in theory or in practice. .
In: Postdigital science and education, Band 5, Heft 3, S. 549-552
ISSN: 2524-4868
In: Werkstattstechnik: wt, Band 109, Heft 11-12, S. 845-846
ISSN: 1436-4980
Von der Waschmaschine über Blutdruckmessgeräte bis hin zu Wearables – Mikrocontroller sind in fast jedem technischen Gerät verbaut. Mit "AIfES" ist Forscherinnen und Forschern am Fraunhofer-Institut für Mikroelektronische Schaltungen und Systeme IMS in Duisburg jetzt die Entwicklung einer sensornahen Künstlichen Intelligenz für Mikrocontroller und eingebettete Systeme gelungen, die ein voll konfigurierbares künstliches neuronales Netz umfasst. AIfES soll die Möglichkeit bieten, kleine intelligente Mikroelektroniken und Sensoren zu entwickeln, die keine Verbindung zu einer Cloud oder zu leistungsfähigeren Computern benötigen und sogar in der Lage sind, selbst zu lernen.
In: University of Chicago, Becker Friedman Institute for Economics Working Paper No. 2023-100
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In: Advanced Studies in Theoretical and Applied Econometrics
This book helps and promotes the use of machine learning tools and techniques in econometrics and explains how machine learning can enhance and expand the econometrics toolbox in theory and in practice. Throughout the volume, the authors raise and answer six questions: 1) What are the similarities between existing econometric and machine learning techniques? 2) To what extent can machine learning techniques assist econometric investigation? Specifically, how robust or stable is the prediction from machine learning algorithms given the ever-changing nature of human behavior? 3) Can machine learning techniques assist in testing statistical hypotheses and identifying causal relationships in 'big data? 4) How can existing econometric techniques be extended by incorporating machine learning concepts? 5) How can new econometric tools and approaches be elaborated on based on machine learning techniques? 6) Is it possible to develop machine learning techniques further and make them even more readily applicable in econometrics? As the data structures in economic and financial data become more complex and models become more sophisticated, the book takes a multidisciplinary approach in developing both disciplines of machine learning and econometrics in conjunction, rather than in isolation. This volume is a must-read for scholars, researchers, students, policy-makers, and practitioners, who are using econometrics in theory or in practice
In: European data protection law review: EdpL, Band 4, Heft 3, S. 320-332
ISSN: 2364-284X
Machine Learning (ML) and Artificial Intelligence (AI) impact many aspects of human life, from recommending a significant other to assist the search for extraterrestrial life. The area develops rapidly and exiting unexplored design spaces are constantly laid bare. The focus in this work is one of these areas; ML systems where decisions concerning ML model training, usage and selection of target domain lay in the hands of domain experts. This work is then on ML systems that function as a tool that augments and/or enhance human capabilities. The approach presented is denoted Human In Command ML (HIC-ML) systems. To enquire into this research domain design experiments of varying fidelity were used. Two of these experiments focus on augmenting human capabilities and targets the domains commuting and sorting batteries. One experiment focuses on enhancing human capabilities by identifying similar hand-painted plates. The experiments are used as illustrative examples to explore settings where domain experts potentially can: independently train an ML model and in an iterative fashion, interact with it and interpret and understand its decisions. HIC-ML should be seen as a governance principle that focuses on adding value and meaning to users. In this work, concrete application areas are presented and discussed. To open up for designing ML-based products for the area an abstract model for HIC-ML is constructed and design guidelines are proposed. In addition, terminology and abstractions useful when designing for explicability are presented by imposing structure and rigidity derived from scientific explanations. Together, this opens up for a contextual shift in ML and makes new application areas probable, areas that naturally couples the usage of AI technology to human virtues and potentially, as a consequence, can result in a democratisation of the usage and knowledge concerning this powerful technology.
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In: JFDS: https://jfds.pm-research.com/content/2/1/10
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Working paper
In: Review of international studies: RIS, Band 49, Heft 1, S. 20-36
ISSN: 1469-9044
AbstractA significant set of epistemic and political transformations are taking place as states and societies begin to understand themselves and their problems through the paradigm of deep neural network algorithms. A machine learning political order does not merely change the political technologies of governance, but is itself a reordering of politics, of what the political can be. When algorithmic systems reduce the pluridimensionality of politics to the output of a model, they simultaneously foreclose the potential for other political claims to be made and alternative political projects to be built. More than this foreclosure, a machine learning political order actively profits and learns from the fracturing of communities and the destabilising of democratic rights. The transformation from rules-based algorithms to deep learning models has paralleled the undoing of rules-based social and international orders – from the use of machine learning in the campaigns of the UK EU referendum, to the trialling of algorithmic immigration and welfare systems, and the use of deep learning in the COVID-19 pandemic – with political problems becoming reconfigured as machine learning problems. Machine learning political orders decouple their attributes, features and clusters from underlying social values, no longer tethered to notions of good governance or a good society, but searching instead for the optimal function of abstract representations of data.
A significant set of epistemic and political transformations are taking place as states and societies begin to understand themselves and their problems through the paradigm of deep neural network algorithms. A machine learning political order does not merely change the political technologies of governance, but is itself a reordering of politics, of what the political can be. When algorithmic systems reduce the pluridimensionality of politics to the output of a model, they simultaneously foreclose the potential for other political claims to be made and alternative political projects to be built. More than this foreclosure, a machine learning political order actively profits and learns from the fracturing of communities and the destabilising of democratic rights. The transformation from rules-based algorithms to deep learning models has paralleled the undoing of rules-based social and international orders – from the use of machine learning in the campaigns of the UK EU referendum, to the trialling of algorithmic immigration and welfare systems, and the use of deep learning in the COVID-19 pandemic – with political problems becoming reconfigured as machine learning problems. Machine learning political orders decouple their attributes, features and clusters from underlying social values, no longer tethered to notions of good governance or a good society, but searching instead for the optimal function of abstract representations of data.
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